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Stock Market Trend Prediction Using Support Vector Machines and Variable Selection Methods

机译:使用支持向量机和可变选择方法的股票市场趋势预测

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In this paper, a prediction model integrating machine learning and statistical analysis tools is presented to predict the trend of stock market. The proposed approach consists of three stages, as follows. In the first stage, the system uses technical analysis to calculate useful indicators based on historical data. Then, two different variable selection methods are applied to select the most important variables that describe the given data set. Finally, support vector machines (SVM) has been used to construct the forecasting model. The hybridized approach was tested to solve the prediction task of directional changes in Dow Jones industrial average (DJIA) index. To evaluate the effectiveness of the use of variable selection techniques in construction of prediction models, this paper compares the performance of the proposed model with the standard SVM-based method. The study concludes that the use of a successful feature extraction technique can improve the forecasting accuracy of the prediction model.
机译:在本文中,提出了一种集成机器学习和统计分析工具的预测模型,以预测股票市场的趋势。所提出的方法由三个阶段组成,如下所示。在第一阶段,系统使用技术分析来根据历史数据计算有用指标。然后,应用两个不同的变量选择方法以选择描述给定数据集的最重要的变量。最后,支持向量机(SVM)已用于构建预测模型。测试了杂交的方法,以解决道琼斯工业平均水平(DJIA)指数的定向变化的预测任务。为了评估使用可变选择技术在建造预测模型中的有效性,本文将提出模型与基于标准SVM的方法的性能进行了比较。该研究得出结论,使用成功的特征提取技术可以提高预测模型的预测精度。

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